GloPath: An Entity-Centric Foundation Model for Glomerular Lesion Assessment and Clinicopathological Insights

Journal: arXiv
Published Date:

Abstract

Glomerular pathology is central to the diagnosis and prognosis of renal diseases, yet the heterogeneity of glomerular morphology and fine-grained lesion patterns remain challenging for current AI approaches. We present GloPath, an entity-centric foundation model trained on over one million glomeruli extracted from 14,049 renal biopsy specimens using multi-scale and multi-view self-supervised learning. GloPath addresses two major challenges in nephropathology: glomerular lesion assessment and clinicopathological insights discovery. For lesion assessment, GloPath was benchmarked across three independent cohorts on 52 tasks, including lesion recognition, grading, few-shot classification, and cross-modality diagnosis-outperforming state-of-the-art methods in 42 tasks (80.8%). In the large-scale real-world study, it achieved an ROC-AUC of 91.51% for lesion recognition, demonstrating strong robustness in routine clinical settings. For clinicopathological insights, GloPath systematically revealed statistically significant associations between glomerular morphological parameters and clinical indicators across 224 morphology-clinical variable pairs, demonstrating its capacity to connect tissue-level pathology with patient-level outcomes. Together, these results position GloPath as a scalable and interpretable platform for glomerular lesion assessment and clinicopathological discovery, representing a step toward clinically translatable AI in renal pathology.

Authors

  • Qiming He; Jing Li; Tian Guan; Yifei Ma; Zimo Zhao; Yanxia Wang; Hongjing Chen; Yingming Xu; Shuang Ge; Yexing Zhang; Yizhi Wang; Xinrui Chen; Lianghui Zhu; Yiqing Liu; Qingxia Hou; Shuyan Zhao; Xiaoqin Wang; Lili Ma; Peizhen Hu; Qiang Huang; Zihan Wang; Zhiyuan Shen; Junru Cheng; Siqi Zeng; Jiurun Chen; Zhen Song; Chao He; Zhe Wang; Yonghong He